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Using toponym co-occurrences to measure relationships between places: review, application and evaluation

机译:使用地名同现来衡量地点之间的关系:审查,申请和评估

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While there is consensus that network embeddedness of cities is of great importance for their development, the precise effect is difficult to assess because of a lack of consistent information on relations between cities. This paper presents, applies and evaluates a rather novel method to establish the strength of relationships between places, a method we refer to as 'the toponym co-occurrence method'. This approach builds the urban system on the basis of co-occurrences of place names in a text corpus. We innovate by exploiting a so far unparalleled amount of data, namely the billions of web pages contained in the commoncrawl web archive, and by applying the method also to small places that tend to be ignored by other methods. The entire settlement system of the Netherlands is consequently explored. In addition, we innovatively apply machine learning techniques to classify these relations. Much attention is paid to solving biases deriving from place name disambiguation. Gravity modelling is employed to assess the resulting spatial organization of the Netherlands. It turns out that the gravity model fits very well with the pattern of relationships between places as found in digital space, which contributes to our assessment that the toponym co-occurrence method is a solid proxy for relationships in real space. Using the method, it is established that the relationships in the Randstad region, by many considered a coherent metropolitan entity, are actually somewhat less strong than expected. In contrast, historically important, but nowadays small cities in the periphery tend to have maintained their prominent position in the pattern of relationships. Suburban, relatively new places in the shadow of a larger city tend to be weakly related to other places. Several suggestions to further improve the method, in particular the classification of relationships, are discussed.
机译:尽管人们普遍认为城市的网络嵌入对于城市的发展至关重要,但由于缺乏有关城市之间关系的一致信息,因此很难评估精确的效果。本文介绍,应用和评估了一种相当新颖的方法来建立场所之间关系的强度,该方法被我们称为“地名同现法”。这种方法基于文本语料库中地名的同时出现来构建城市系统。我们通过利用迄今无与伦比的数据量(即commoncrawl网络存档中包含的数十亿个网页),并将这种方法也应用于可能被其他方法忽略的小地方来进行创新。因此,对荷兰的整个定居系统进行了探索。此外,我们创新地应用了机器学习技术对这些关系进行分类。人们非常重视解决因地名歧义消除而产生的偏见。重力模型用于评估荷兰的空间结构。事实证明,重力模型非常适合数字空间中发现的地点之间的关系模式,这有助于我们评估地名同现法是现实空间中关系的可靠代表。使用该方法可以确定,在兰斯塔德地区,被许多人认为是连贯的大都市实体的关系实际上比预期的要弱一些。相反,在历史上很重要,但时至今日,周边的小城市往往在关系模式中保持着突出的地位。在大城市的阴影下,郊区的相对较新的地方与其他地方的联系往往较弱。讨论了进一步改进该方法的一些建议,特别是关系的分类。

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